Robust Chaotic Message Masking Communication over Noisy Channels : The Modified Chaos Approach(Systems and Control)
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概要
- 論文の詳細を見る
This paper studies the robustness of message masking communication over noisy channels using modified chaotic systems. First, the modified chaotic systems are introduced with a higher capability of transmitting messages than typical chaotic systems. Then, assuming an ideal channel, the chaotic message masking scheme is derived which achieves asymptotic convergence or dead-beat performance for recovering messages. Next, considering the case of noisy channels, an H^∞ performance and an L_2-gain optimal noise rejection are achieved by solving linear matrix inequality (LMI) problems. Furthermore, the ultimate bound of synchronization error and recovered message error can be adjusted by both design gains and the system parameter of the modified chaos. Using the proposed method, the bit-error-ratio and noise tolerance are improved. Finally, numerical simulations and DSP experiments are carried out to verify the theoretical derivations.
- 社団法人電子情報通信学会の論文
- 2006-04-01
著者
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Chiu Chian‐song
Chung‐yuan Christian Univ. Chungli Twn
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Liu Peter
Bg Networking & Communications Benq Corporation
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CHIANG Tung-Sheng
Department of Electrical Engineering, Ching-Yun University
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CHIU Chian-Song
Department of Electronic Engineering, Chien-Kuo Technology University
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Chiu Chian-song
Department Of Electrical Engineering Chung-yuan Christian University
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Chiang Tung‐sheng
Ching‐yun Univ. Chungli Twn
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Chiang Tung-sheng
Department Of Electrical Engineering Ching-yun University
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